US9790938B2 - Pump monitoring system and method - Google Patents
Pump monitoring system and method Download PDFInfo
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- US9790938B2 US9790938B2 US14/856,705 US201514856705A US9790938B2 US 9790938 B2 US9790938 B2 US 9790938B2 US 201514856705 A US201514856705 A US 201514856705A US 9790938 B2 US9790938 B2 US 9790938B2
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- pump
- output signal
- sensor
- estimate
- well
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- F—MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
- F04—POSITIVE - DISPLACEMENT MACHINES FOR LIQUIDS; PUMPS FOR LIQUIDS OR ELASTIC FLUIDS
- F04B—POSITIVE-DISPLACEMENT MACHINES FOR LIQUIDS; PUMPS
- F04B51/00—Testing machines, pumps, or pumping installations
-
- F—MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
- F04—POSITIVE - DISPLACEMENT MACHINES FOR LIQUIDS; PUMPS FOR LIQUIDS OR ELASTIC FLUIDS
- F04B—POSITIVE-DISPLACEMENT MACHINES FOR LIQUIDS; PUMPS
- F04B47/00—Pumps or pumping installations specially adapted for raising fluids from great depths, e.g. well pumps
-
- F—MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
- F04—POSITIVE - DISPLACEMENT MACHINES FOR LIQUIDS; PUMPS FOR LIQUIDS OR ELASTIC FLUIDS
- F04B—POSITIVE-DISPLACEMENT MACHINES FOR LIQUIDS; PUMPS
- F04B49/00—Control, e.g. of pump delivery, or pump pressure of, or safety measures for, machines, pumps, or pumping installations, not otherwise provided for, or of interest apart from, groups F04B1/00 - F04B47/00
- F04B49/06—Control using electricity
- F04B49/065—Control using electricity and making use of computers
Definitions
- the present disclosure relates to a system for monitoring surface pumps, to pumps incorporating such a system and to methods of monitoring such pumps.
- Surface pumps are used in a variety of applications for raising liquid from a well or borehole to surface level.
- such pumps may be used to provide drinking water to communities, particularly in the developing world, with lever-action reciprocating handpumps such as the Afridev pump or India Mark II being the most common types.
- Onshore oil deposits where the deposit does not create sufficient pressure to drive oil to the surface may also use a piston pump (for example of the nodding donkey type) to raise oil to the surface.
- a “smart hand pump” was developed and tested in sub-Saharan Africa. This was based on the incorporation of a consumer-grade, low-cost IC-based accelerometer, such as those found commonly in mobile phone handsets and games controllers, enclosed in an inexpensive waterproof container and securely fitted into or onto the handle of a standard hand pump.
- the accelerometer was connected to a low power microprocessor programmed to estimate from the accelerometer output signal by measuring the number of pumping strokes and the range of pump movement.
- the data acquired was then automatically transmitted over the domestic mobile telecommunications network as an SMS text message to a control server which allowed identification of the location of the pumps and an indication of the usage patterns of any individual pump. While usage data was, in itself, of interest, the monitoring of usage also allowed the detection of inoperable pumps so that a maintenance team could be dispatched.
- the smart hand pump was a useful step forward, it only provided crude usage data and could only alert to a faulty pump after it had become inoperable or unused, or a major fault had developed.
- monitoring the level of oil allows the productivity and lifetime of the field to be monitored.
- a sensor down the well or borehole, for example an electrical conductivity sensor. This can be done on an occasional basis (as “dipping the well”), or in some cases level sensors can be permanently disposed in the well.
- the present disclosure provides a monitoring system for a surface pump which can be incorporated into the pump, either on manufacture or as a retrofit, and which can provide information on the condition of the pump and on the level of liquid in the well on a non-invasive basis, i.e. without needing any sensor disposed down the well or borehole.
- this is achieved by monitoring an operating parameter of the pump itself, such as the acceleration or vibration of a component of the pump or a liquid pressure in the pump, the inventors having found that these parameters vary with the level of liquid in the well.
- monitoring these parameters can provide an estimate of the condition of the pump and in particular can detect when the condition of the pump changes significantly, for example departs from a predefined normal condition.
- the processor can also be adapted to output an indication relating to the user of the pump, for example whether the user is adult or child, male or female, it having been found that these different types of user tend to operate the pump in subtly different ways which are detectable in the measured pump operating parameters.
- Monitoring the user is of interest because, for example, school attendance for girls is a particular problem in remote areas of developing countries and water collection duties become more time-consuming when handpumps fail.
- One aspect of the present disclosure therefore provides a monitoring system for a surface pump for raising liquid from a well, the monitoring system comprising: a sensor mountable on the surface pump for measuring an operating parameter of the pump and providing an output signal representative thereof; a signal processor for receiving the sensor output signal and processing it to derive therefrom an estimate of the level of liquid in the well.
- the signal processor can utilise a trained model or inference engine such as a support vector machine, artificial neural network or kernel-based machine which takes the output of the sensor and provides an output indicative of the level of liquid in the well.
- a trained model or inference engine such as a support vector machine, artificial neural network or kernel-based machine which takes the output of the sensor and provides an output indicative of the level of liquid in the well.
- a trained model, inference engine or the like to derive therefrom an estimate of the condition of the pump.
- the trained model can be a classifier such as a support vector model, artificial neural network or kernel-based machine though other types of machine learning algorithm can be used.
- the term “trained model” will be used hereafter to encompass inference engines and other machine learning techniques.
- the sensor output is typically a time series of measurements.
- the time series is subjected to a feature extraction process.
- a sensor output recording can be divided into individual sections and for each section a feature vector which describes the shape of the waveform in that section can be created.
- the feature vector can also include an estimate of the amount of noise in the section.
- the sections may correspond to individual cycles of a periodic sensor output signal or to predetermined time periods.
- each individual cycle can be divided into a predefined number of subsections and a feature vector created consisting of the value of the waveform at some point within each sub-section and the average noise within each sub-section. In this way the characteristics of each cycle are described in a consistent way (i.e. the feature vector has the same number of components) despite the variation in amplitude and period.
- the trained model may be trained using a training set of data consisting of recordings of the sensor output for the pump with a variety of known liquid levels in the well and methods of training such models are well known in the machine learning art.
- a training set of data using sensor recordings for normal pumps and malfunctioning pumps can be used, or a training set which comprises only normal operation can be used, this defining a normal region of operation and departures from that region by more than a preset amount can be used to indicate malfunctioning or deterioration of the pump.
- the surface pump can be a water pump, such as a hand pump, or an oil pump.
- the sensor can be an accelerometer, gyroscope or vibration transducer or a pressure sensor for sensing the liquid pressure in the pump.
- the sensor can be an accelerometer (or gyroscope) sensing the movement of the handle such as found in the smart hand pump described above and the output signal can give the displacement and arc of the handle.
- the data processing may be carried out at the pump, this having the advantage of requiring only the output summary data to be transmitted via a communications network (such as a text message on a cellular mobile telephone network or via a data connection) saving bandwidth and reducing cost.
- a communications network such as a text message on a cellular mobile telephone network or via a data connection
- the sensor output signals, compressed or otherwise lightly-processed if desired to be transmitted for processing at a server remote from the pump.
- the server can receive either the sensor output or the processed signals and display them allowing management of plural pumps disposed across a geographical region.
- the data transmitted from the pump to the server to default to relatively low resolution but to be switchable to higher resolution for more detailed investigation.
- the communication between pump and server is preferably two-way.
- FIGS. 1A and 1B schematically illustrate the two most common designs of water hand pump
- FIGS. 2A and 2B illustrate example sensor outputs for the two designs of hand pump illustrated in FIGS. 1A and 1B for an embodiment of the present disclosure utilising an accelerometer on the hand pump handle;
- FIG. 3 illustrates an example feature extraction method according to one embodiment of the present disclosure
- FIGS. 4A and 4B are visualisations of feature vectors corresponding to recordings of a variety of hand pumps
- FIGS. 5A and 5B compare estimates of water level in a well obtained by an embodiment of the present disclosure with water levels measured directly;
- FIGS. 6A and 6B illustrate heteroscedastic Gaussian processes fitted to sensor data from a water hand pump
- FIG. 7 is a flow diagram of the method according to one embodiment of the present disclosure.
- FIG. 8 is a flow diagram of a method of training a model according to one embodiment of the present disclosure.
- FIG. 9 is a schematic diagram of a monitoring system according to one embodiment of the present disclosure.
- FIG. 1A and FIG. 1B of the accompanying drawings schematically illustrate respectively the Afridev and India Mark II types of water hand pump. These two pumps form the majority of hand pumps in use in the developing world. Both are positive displacement, piston type pumps in which a pivotably mounted handle 1 is connected either directly or with a connecting chain to a pump rod 2 which slides a non-return piston valve (not visible) in a vertical cylindrical pipe 4 fitted at its base with a foot valve. In use the vertical cylindrical pipe 4 is disposed within a well or borehole 6 .
- a pump handle 1 causes vertical reciprocation of the pumping rod 2 and piston valve with upwards movement of the piston valve drawing water from the well or borehole into the cylindrical pipe 4 through the foot valve and also moving water above the piston valve (from the previous stroke) up through the pump head 8 to be dispensed.
- the subsequent downward movement of the piston rod 2 forces the piston valve through the water which has just been drawn in, to start the cycle again.
- the pump handle 1 is fitted with a sensor fitted within a package 10 known as a waterpoint data transmitter 10 which, in this embodiment, includes a consumergrade, low-cost IC-based accelerometer such as that found in a mobile phone handset or games controller, such as an Analogue Devices ADXL335.
- FIG. 9 schematically illustrates the waterpoint data transmitter 10 fitted to a pump.
- the accelerometer 11 senses movement in the X, Y and Z directions and produces three analogue output signals proportional to the acceleration sensed along each axis.
- the analogue output can be filtered by a simple RC filter 12 to remove any high-frequency noise, and passed via an analogue to digital converter 13 to a data processor 15 for processing the data.
- the accelerometer 11 can be a digital accelerometer obviating the need for the RC filter 12 and separate A/D converter 13 .
- the output of the data processor 15 is passed to a modem 17 for dispatch via a data link 19 , for example provided by a communications network such as the cellular mobile telephone network, and another modem 18 to a server 21 .
- the estimation of liquid level in the well and pump condition based on the sensor data can be carried out by the data processor 15 or at the server 21 .
- the data processor 15 can be adapted only to compress and package the sensor data to be sent via a data connection provided, for example, by mobile telephone or other communication network e.g. via an SMS text message on the GSM network, or can obtain the liquid level and pump condition data and compress and package that for transmission to the server 21 via the data connection.
- the explanation below applies to processing either at the server 21 or at the pump.
- the water point data transmitter 10 can be retrofitted to water pumps or can be fitted on manufacture.
- FIGS. 2A and 2B show approximately six seconds of recorded accelerometer data for each of an Afridev pump ( FIG. 2A ) and an India Mark II pump ( FIG. 2B ) for each of the three, X, and Z directions.
- the Z direction corresponds to the main up and down direction of the handle, the Y direction to the longitudinal axis of the handle and the X direction transverse of the handle.
- the X direction recordings There is a marked difference in the X direction recordings, this is thought to be because the India Mark II pump has a different connection between the handle and pumping rod resulting in a slightly elliptical motion of the handle.
- the X direction for the India Mark II pump shows a greater periodicity.
- the amount of noise differs between the upstroke and downstroke. This being because during the downstroke the handle is under load whereas the upstroke is a lower load return stroke.
- the sensor outputs shown in FIGS. 2A and 2B are processed to reduce their dimensionality and put them in a form which is suitable for analysis by a conventional machine learning algorithm such as a support vector machine.
- a conventional machine learning algorithm such as a support vector machine.
- FIG. 3 A preferred type of feature extraction is illustrated in FIG. 3 .
- the accelerometer 11 used in this embodiment has a sampling rate of 96 Hz, meaning that it provides 96 acceleration measurements per second (per axis).
- FIG. 3 shows magnified one period from one axis of the recording of FIG. 2B with the individual acceleration samples shown as dots.
- the noise can be taken as the distance between each original data point and the spline.
- each feature vector consists of 16 spline values and 16 noise values.
- Each of the feature vectors for a complete recording thus represents a point in a 32 dimensional “feature vector space”. It should be appreciated that by dividing the sensor output into cycles and dividing each cycle into an equal number of intervals, the method is effectively distorting the time base to allow for different timing of pump operation by different users or in different circumstances.
- each axis of the sensor output provides typically one feature vector per second, each feature vector having 32 components, though the method works for any cycle length.
- the cycle length can be informative, it goes up if the aquifer is low because of the extra effort required, and can go down if the pump is leaky, and so period length can be added as a component of the feature vector.
- the feature vectors thus provide a representation of the sensor output recording which can be analysed by a machine learning algorithm.
- FIGS. 4A and 4B illustrate respectively the feature vectors from the recordings of FIGS. 2A and 2B but with their dimensionality reduced to two dimensions for easy visualisation by means of Sammon's mapping.
- Sammon's mapping is a visualisation technique which tries to preserve the relative spacings of high dimensional feature vectors in a low dimensional display (in this case two dimensional). It can be seen from FIGS. 4A and 4B that the feature vectors from different recordings group together demonstrating that the feature vector representation of the recordings preserves the useful information in the recordings. It should be noted that the full 32 dimensions are used in the training and monitoring discussed below—the two dimensional plots of FIGS. 4 A and 4 B are just for visualisation.
- the estimates of liquid level in the well and condition of the pump are obtained from the feature vectors by use of a trained model, in this case a support vector machine.
- a support vector machine is one type of machine learning algorithm, but other types can be used.
- the model must first be trained on a training set of data for which the desired output (i.e. the liquid level or pump condition) is known. Once the support vector machine has been trained on a training data set, it can be presented with new feature vectors and it will output an estimate of the liquid level or pump condition.
- FIGS. 5A and 5B illustrates the results of ground water level predictions (crosses) and measured level (lighter dots) with FIG. 5A being the individual spline estimations (i.e. one for each cycle) and FIG. 5B showing the average estimation from each recording. It can be seen that there is good agreement between the estimations and the directly measured level.
- FIGS. 7 and 8 summarise the test and training aspects of this embodiment.
- a training set of accelerometer data is taken together with measured water level data.
- a feature vector is created in step 91 as explained above and these feature vectors together with the measured water levels are used in step 92 to train the model (such as the SVM above).
- accelerometer data is taken in step 80 and in step 81 is formed into feature vectors for each cycle as before. These feature vectors are input in step 82 to the trained model, which in step 83 outputs the water level and any other aspects which it has been trained to distinguish, such as the pump condition or the user. Training for other aspects corresponds to the training process of FIG. 8 .
- Training to detect the condition of the pump can either utilise data from pumps which are known to be faulty (for example by fitting them with faulty components), or can follow a novelty detection approach in which the distance of a feature vector from a predefined region of normality in the multi-dimensional feature vector space (32 dimensions in the embodiment above) is calculated and, if it is greater than a preset threshold, a malfunction alarm is generated.
- the region of novelty may be defined by using a training data set of recordings of pumps known to be in normal operation.
- the distance of an input feature vector from the region of normality can be calculated as the distance from the centroid of the normal feature vectors or the distance from a certain number of nearby feature vectors.
- training to distinguish users can be based on a training data set consisting of recordings from different users such as male adult, female adult, child etc.
- FIGS. 6A and 6B illustrate Gaussian processes fitted to a 15 second interval of data from an Afridev pump for the Y axis (top) and Z axis (bottom).
- FIG. 6A is data from a deep well and FIG. 6B from a shallow well. In each case the data points from the accelerometer are shown as dots and the fitted Gaussian process shown as a line.
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Abstract
Description
x=ƒ(t)+ε
where ƒ(t) is the function describing the underlying waveform and ε is the noise. For the function ƒ(t) a smoothing spline can be selected which minimises the weighted sum of the function fluctuation and the corresponding mean square error as shown in the equation below:
Σi=1 n(x i −s(t i))2+(λ−1)∫t[s″(t i)]2 dt
where s is the point on the smoothing spline that minimises the function.
The smoothing parameter λ controls the complexity of the spline that is fitted to the data. For this embodiment a value of λ=0.002 was selected, though the results are relatively insensitive to changes in λ.
Claims (20)
Applications Claiming Priority (2)
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GB1416431.3 | 2014-09-17 | ||
GBGB1416431.3A GB201416431D0 (en) | 2014-09-17 | 2014-09-17 | Pump monitoring system and method |
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US20160076535A1 US20160076535A1 (en) | 2016-03-17 |
US9790938B2 true US9790938B2 (en) | 2017-10-17 |
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US14/856,705 Active 2036-01-07 US9790938B2 (en) | 2014-09-17 | 2015-09-17 | Pump monitoring system and method |
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Cited By (2)
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CN109026647A (en) * | 2018-08-14 | 2018-12-18 | 东华大学 | A kind of the Hydraulic pump fault detection method and system of BASA optimization GRBF-SVM |
US10962955B2 (en) | 2019-07-26 | 2021-03-30 | Fluid Power AI Inc. | System and method for evaluating hydraulic system events and executing responses |
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Cited By (5)
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CN109026647A (en) * | 2018-08-14 | 2018-12-18 | 东华大学 | A kind of the Hydraulic pump fault detection method and system of BASA optimization GRBF-SVM |
US10962955B2 (en) | 2019-07-26 | 2021-03-30 | Fluid Power AI Inc. | System and method for evaluating hydraulic system events and executing responses |
US11300942B2 (en) | 2019-07-26 | 2022-04-12 | Fluid Power AI Inc. | System and method for evaluating hydraulic system events and executing responses |
US11650567B2 (en) | 2019-07-26 | 2023-05-16 | Fluid Power AI Inc. | System and method for evaluating hydraulic system events and executing responses |
US11880183B2 (en) | 2019-07-26 | 2024-01-23 | Fluid Power Ai, Llc | System and method for evaluating hydraulic system events and executing responses |
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US20160076535A1 (en) | 2016-03-17 |
GB201416431D0 (en) | 2014-10-29 |
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